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Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets

Robotic interventions in hazardous scenarios need to pay special attention to safety, as in most cases it is necessary to have an expert operator in the loop. Moreover, the use of a multi-modal Human-Robot Interface allows the user to interact with the robot using manual control in critical steps, a...

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Autores principales: Veiga Almagro, Carlos, Di Castro, Mario, Lunghi, Giacomo, Marín Prades, Raúl, Sanz Valero, Pedro José, Pérez, Manuel Ferre, Masi, Alessandro
Lenguaje:eng
Publicado: 2019
Acceso en línea:https://dx.doi.org/10.3390/s19143220
http://cds.cern.ch/record/2690555
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author Veiga Almagro, Carlos
Di Castro, Mario
Lunghi, Giacomo
Marín Prades, Raúl
Sanz Valero, Pedro José
Pérez, Manuel Ferre
Masi, Alessandro
author_facet Veiga Almagro, Carlos
Di Castro, Mario
Lunghi, Giacomo
Marín Prades, Raúl
Sanz Valero, Pedro José
Pérez, Manuel Ferre
Masi, Alessandro
author_sort Veiga Almagro, Carlos
collection CERN
description Robotic interventions in hazardous scenarios need to pay special attention to safety, as in most cases it is necessary to have an expert operator in the loop. Moreover, the use of a multi-modal Human-Robot Interface allows the user to interact with the robot using manual control in critical steps, as well as semi-autonomous behaviours in more secure scenarios, by using, for example, object tracking and recognition techniques. This paper describes a novel vision system to track and estimate the depth of metallic targets for robotic interventions. The system has been designed for on-hand monocular cameras, focusing on solving lack of visibility and partial occlusions. This solution has been validated during real interventions at the Centre for Nuclear Research (CERN) accelerator facilities, achieving 95% success in autonomous mode and 100% in a supervised manner. The system increases the safety and efficiency of the robotic operations, reducing the cognitive fatigue of the operator during non-critical mission phases. The integration of such an assistance system is especially important when facing complex (or repetitive) tasks, in order to reduce the work load and accumulated stress of the operator, enhancing the performance and safety of the mission.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling oai-inspirehep.net-17538102019-09-30T06:29:59Zdoi:10.3390/s19143220http://cds.cern.ch/record/2690555engVeiga Almagro, CarlosDi Castro, MarioLunghi, GiacomoMarín Prades, RaúlSanz Valero, Pedro JoséPérez, Manuel FerreMasi, AlessandroMonocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic TargetsRobotic interventions in hazardous scenarios need to pay special attention to safety, as in most cases it is necessary to have an expert operator in the loop. Moreover, the use of a multi-modal Human-Robot Interface allows the user to interact with the robot using manual control in critical steps, as well as semi-autonomous behaviours in more secure scenarios, by using, for example, object tracking and recognition techniques. This paper describes a novel vision system to track and estimate the depth of metallic targets for robotic interventions. The system has been designed for on-hand monocular cameras, focusing on solving lack of visibility and partial occlusions. This solution has been validated during real interventions at the Centre for Nuclear Research (CERN) accelerator facilities, achieving 95% success in autonomous mode and 100% in a supervised manner. The system increases the safety and efficiency of the robotic operations, reducing the cognitive fatigue of the operator during non-critical mission phases. The integration of such an assistance system is especially important when facing complex (or repetitive) tasks, in order to reduce the work load and accumulated stress of the operator, enhancing the performance and safety of the mission.oai:inspirehep.net:17538102019
spellingShingle Veiga Almagro, Carlos
Di Castro, Mario
Lunghi, Giacomo
Marín Prades, Raúl
Sanz Valero, Pedro José
Pérez, Manuel Ferre
Masi, Alessandro
Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets
title Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets
title_full Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets
title_fullStr Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets
title_full_unstemmed Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets
title_short Monocular Robust Depth Estimation Vision System for Robotic Tasks Interventions in Metallic Targets
title_sort monocular robust depth estimation vision system for robotic tasks interventions in metallic targets
url https://dx.doi.org/10.3390/s19143220
http://cds.cern.ch/record/2690555
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